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Pinned repositories
Repositories
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serving
A flexible, high-performance serving system for machine learning models
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tensorflow
An Open Source Machine Learning Framework for Everyone
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model-card-toolkit
a tool that leverages rich metadata and lineage information in MLMD to build a model card
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tfjs
A WebGL accelerated JavaScript library for training and deploying ML models.
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datasets
TFDS is a collection of datasets ready to use with TensorFlow, Jax, ...
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addons
Useful extra functionality for TensorFlow 2.x maintained by SIG-addons
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runtime
A performant and modular runtime for TensorFlow
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docs
TensorFlow documentation
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tfx
TFX is an end-to-end platform for deploying production ML pipelines
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io
Dataset, streaming, and file system extensions maintained by TensorFlow SIG-IO
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profiler
A profiling and performance analysis tool for TensorFlow
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benchmarks
A benchmark framework for Tensorflow
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community
Stores documents used by the TensorFlow developer community
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tfjs-examples
Examples built with TensorFlow.js
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tflite-support
TFLite Support is a toolkit that helps users to develop ML and deploy TFLite models onto mobile / ioT devices.
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models
Models and examples built with TensorFlow
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probability
Probabilistic reasoning and statistical analysis in TensorFlow
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docs-l10n
Translations of TensorFlow documentation
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data-validation
Library for exploring and validating machine learning data
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swift-apis
Swift for TensorFlow Deep Learning Library
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fairness-indicators
Tensorflow's Fairness Evaluation and Visualization Toolkit
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ngraph-bridge
TensorFlow-nGraph bridge
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neural-structured-learning
Training neural models with structured signals.
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federated
A framework for implementing federated learning
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tensorboard
TensorFlow's Visualization Toolkit
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cloud
The TensorFlow Cloud repository provides APIs that will allow to easily go from debugging and training your Keras and TensorFlow code in a local environment to distributed training in the cloud.